Title: Forecasting wireless communication technologies

Authors: Sabrina Patino, Jisun Kim, Tugrul U. Daim

Addresses: Department of Engineering and Technology Management, Portland State University, P.O. Box 751, Portland OR, USA. ' Department of Engineering and Technology Management, Portland State University, P.O. Box 751, Portland OR, USA. ' Department of Engineering and Technology Management, Portland State University, P.O. Box 751, Portland OR, USA

Abstract: The purpose of the paper is to present a formal comparison of a variety of multiple regression models in technology forecasting for wireless communication. We compare results obtained from multiple regression models to determine whether they provide a superior fitting and forecasting performance. Both techniques predict the year of wireless communication technology introduction from the first (1G) to fourth (4G) generations. This paper intends to identify the key parameters impacting the growth of wireless communications. The comparison of technology forecasting approaches benefits future researchers and practitioners when developing a prediction of future wireless communication technologies. The items of focus will be to understand the relationship between variable selection and model fit. Because the forecasting error was successfully reduced from previous approaches, the quadratic regression methodology is applied to the forecasting of future technology commercialisation. In this study, the data will show that the quadratic regression forecasting technique provides a better fit to the curve.

Keywords: technology forecasting; quadratic regression; wireless communications; variable selection; model fit; commercialisation; first generation; 1G; fourth generation; 4G; applied management science.

DOI: 10.1504/IJAMS.2010.031085

International Journal of Applied Management Science, 2010 Vol.2 No.2, pp.169 - 197

Published online: 20 Jan 2010 *

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